Abstract
Sentiment analysis in text mining is a challenging task. Sentiment is subtly reflected by the tone and affective content of a writer’s words. Conventional text mining techniques, which are based on keyword frequencies, usually run short of accurately detecting such subjective information implied in the text. In this paper, we evaluate several popular classification algorithms, along with three filtering schemes. The filtering schemes progressively shrink the original dataset with respect to the contextual polarity and frequent terms of a document. We call this approach “hierarchical classification”. The effects of the approach in different combination of classification algorithms and filtering schemes are discussed over three sets of controversial online news articles where binary and multi-class classifications are applied. Meanwhile we use two methods to test this hierarchical classification model, and also have a comparison of the two methods.
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Acknowledgments
The authors are thankful for the financial support from the research Grants of Grant No. MYRG152 (Y3-L2)-FST11-ZY, and FDCT 019/2011/A1, offered by the University of Macau and Macau SAR government.
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Communicated by S. Deb, T. Hanne and S. Fong.
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Li, J., Fong, S., Zhuang, Y. et al. Hierarchical classification in text mining for sentiment analysis of online news. Soft Comput 20, 3411–3420 (2016). https://doi.org/10.1007/s00500-015-1812-4
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DOI: https://doi.org/10.1007/s00500-015-1812-4